The posterior distribution in a nonparametric inverse problem is shown to contract to the true parameter at a rate that depends on the smoothness of the parameter, and the smoothness and scale of the prior. Correct combinations of these characteristics lead to the minimax rate. The frequentist coverage of credible sets is shown to depend on the combination of prior and true parameter, with smoother priors leading to zero coverage and rougher priors to conservative coverage. In the latter case credible sets are of the correct order of magnitude. The results are numerically illustrated by the problem of recovering a function from observation of a noisy version of its primitive
In the Bayesian approach, the a priori knowledge about the input of a mathematical model is describe...
This paper proposes a new Bayesian approach for estimating, nonparametrically, parameters in econom...
This paper proposes a new Bayesian approach for estimating, nonparametrically, parameters in econom...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
We study a nonparametric Bayesian approach to linear inverse problems under discrete observations. W...
We consider a Bayesian nonparametric approach to a family of linear inverse problems in a separable ...
We obtain rates of contraction of posterior distributions in inverse problems defined by scales of s...
In the Bayesian approach, the a priori knowledge about the input of a mathematical model is describe...
In the Bayesian approach, the a priori knowledge about the input of a mathematical model is describe...
This paper proposes a new Bayesian approach for estimating, nonparametrically, parameters in econom...
This paper proposes a new Bayesian approach for estimating, nonparametrically, parameters in econom...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
The posterior distribution in a nonparametric inverse problem is shown to contract to the true param...
We study a nonparametric Bayesian approach to linear inverse problems under discrete observations. W...
We consider a Bayesian nonparametric approach to a family of linear inverse problems in a separable ...
We obtain rates of contraction of posterior distributions in inverse problems defined by scales of s...
In the Bayesian approach, the a priori knowledge about the input of a mathematical model is describe...
In the Bayesian approach, the a priori knowledge about the input of a mathematical model is describe...
This paper proposes a new Bayesian approach for estimating, nonparametrically, parameters in econom...
This paper proposes a new Bayesian approach for estimating, nonparametrically, parameters in econom...